Comparative study of intelligent models for the prediction of bladder cancer progression.

New techniques for the prediction of tumour behaviour are needed since statistical analysis has low accuracy and is not applicable to the individual. Artificial intelligence (AI) may provide suitable methods. We have compared the predictive accuracies of neuro-fuzzy modelling (NFM), artificial neura...

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Main Authors: Abbod, M, Linkens, D, Catto, J, Hamdy, F
Format: Journal article
Language:English
Published: 2006
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author Abbod, M
Linkens, D
Catto, J
Hamdy, F
author_facet Abbod, M
Linkens, D
Catto, J
Hamdy, F
author_sort Abbod, M
collection OXFORD
description New techniques for the prediction of tumour behaviour are needed since statistical analysis has low accuracy and is not applicable to the individual. Artificial intelligence (AI) may provide suitable methods. We have compared the predictive accuracies of neuro-fuzzy modelling (NFM), artificial neural networks (ANN) and traditional statistical methods for the prediction of bladder cancer. Experimental molecular biomarkers, including p53 expression and gene methylation, and conventional clinicopathological data were studied in a cohort of 117 patients with bladder cancer. For all 3 methods, models were produced to predict the presence and timing of tumour progression. Both methods of AI predicted progression with an accuracy ranging from 88-100%, which was superior to logistic regression, and NFM appeared to be better than ANN at predicting the timing of progression.
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spelling oxford-uuid:82a41aa3-127d-45b3-882e-c58bb4f97ca52022-03-26T21:38:50ZComparative study of intelligent models for the prediction of bladder cancer progression.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:82a41aa3-127d-45b3-882e-c58bb4f97ca5EnglishSymplectic Elements at Oxford2006Abbod, MLinkens, DCatto, JHamdy, FNew techniques for the prediction of tumour behaviour are needed since statistical analysis has low accuracy and is not applicable to the individual. Artificial intelligence (AI) may provide suitable methods. We have compared the predictive accuracies of neuro-fuzzy modelling (NFM), artificial neural networks (ANN) and traditional statistical methods for the prediction of bladder cancer. Experimental molecular biomarkers, including p53 expression and gene methylation, and conventional clinicopathological data were studied in a cohort of 117 patients with bladder cancer. For all 3 methods, models were produced to predict the presence and timing of tumour progression. Both methods of AI predicted progression with an accuracy ranging from 88-100%, which was superior to logistic regression, and NFM appeared to be better than ANN at predicting the timing of progression.
spellingShingle Abbod, M
Linkens, D
Catto, J
Hamdy, F
Comparative study of intelligent models for the prediction of bladder cancer progression.
title Comparative study of intelligent models for the prediction of bladder cancer progression.
title_full Comparative study of intelligent models for the prediction of bladder cancer progression.
title_fullStr Comparative study of intelligent models for the prediction of bladder cancer progression.
title_full_unstemmed Comparative study of intelligent models for the prediction of bladder cancer progression.
title_short Comparative study of intelligent models for the prediction of bladder cancer progression.
title_sort comparative study of intelligent models for the prediction of bladder cancer progression
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AT linkensd comparativestudyofintelligentmodelsforthepredictionofbladdercancerprogression
AT cattoj comparativestudyofintelligentmodelsforthepredictionofbladdercancerprogression
AT hamdyf comparativestudyofintelligentmodelsforthepredictionofbladdercancerprogression